From Oregon Health & Science University, Portland, OR.
J Am Board Fam Med. 2019 Jul-Aug;32(4):585-595. doi: 10.3122/jabfm.2019.04.180341.
Primary care risk stratification (RS) has been shown to help practices better understand their patient populations' needs and may improve health outcomes and reduce expenditures by targeting and tailoring care to high-need patients. This study aims to understand key considerations practices faced and practice experiences as they began to implement RS models.
We conducted semistructured interviews about experiences in RS with 34 stakeholders from 15 primary care practices in Oregon and Colorado and qualitatively analyzed the data.
Three decisions were important in shaping practices' experiences with RS: choosing established versus self-created algorithms or heuristics, clinical intuition, or a combination; selecting mechanisms for assigning risk scores; determining how to integrate RS approaches into care delivery. Practices using clinical intuition found stratification time-consuming and difficult to incorporate into existing workflows, but trusted risk scores more than those using algorithms. Trust in risk scores was influenced by data extraction capabilities; practices often lacked sufficient data to calculate their perceived optimal risk score. Displaying the scores to the care team was a major issue. Finally, obtaining buy-in from care team members was challenging, requiring repeated cycles of improvement and workflow integration.
Practices used iterative approaches to RS implementation. As a result, procedural and algorithmic changes were introduced and were influenced by practices' health IT, staffing, and resource capacities. Practices were most successful when able to make iterative changes to their approaches, incorporated both automation and human process in RS, educated staff on the importance of RS, and had readily accessible risk scores.
初级保健风险分层 (RS) 已被证明有助于实践更好地了解患者群体的需求,并通过针对高需求患者进行目标定位和定制护理,改善健康结果并降低支出。本研究旨在了解实践在开始实施 RS 模型时面临的关键考虑因素和实践经验。
我们对俄勒冈州和科罗拉多州的 15 个初级保健实践中的 34 名利益相关者进行了关于 RS 经验的半结构化访谈,并对数据进行了定性分析。
有三个决策对塑造实践的 RS 经验很重要:选择已建立的算法或启发式、临床直觉或两者的组合;选择分配风险评分的机制;确定如何将 RS 方法融入护理交付。使用临床直觉的实践发现分层耗时且难以融入现有工作流程,但对风险评分的信任度高于使用算法的实践。对风险评分的信任受到数据提取能力的影响;实践通常缺乏足够的数据来计算其认为的最佳风险评分。向护理团队展示评分是一个主要问题。最后,获得护理团队成员的认可具有挑战性,需要不断改进和整合工作流程。
实践采用迭代方法实施 RS。因此,引入了程序性和算法性的改变,这些改变受到实践的健康信息技术、人员配备和资源能力的影响。当实践能够对其方法进行迭代更改、在 RS 中同时结合自动化和人工流程、对员工进行 RS 重要性的教育以及可以方便地获得风险评分时,实践最为成功。